As technology advanced, collecting data via automatic collection devices become popular, thus we commonly face data sets with lengthy variables, especially when these data sets are collected without specific research goals beforehand. It has been pointed out in the literature that the difficulty of high-dimensional classification problems is intrinsically caused by too many noise variables useless for reducing classification error, which offer less benefits for decision-making, and increase complexity, and confusion in model-interpretation. A good variable selection strategy is therefore a must for using such kinds of data well; especially when we expect to use their results for the succeeding applications/studies, where the model-interpret...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...
Many applications require the ability to identify data that is anomalous with respect to a target gr...
In classification, with an increasing number of variables, the required number of observations grows...
Interpretable classifiers have recently witnessed an increase in attention from the data mining comm...
Les avancées technologiques ont permis le stockage de grandes masses de données en termes de taille ...
Multivariate discrimination or classification is one of the best-studied problem in machine learning...
The optimization and evaluation of a pattern recognition system requires different problems like mul...
We propose a method for selecting variables in latent class analysis, which is the most common model...
The purpose of the present dissertation is to study model selection techniques which are specificall...
The relevance of machine learning (ML) in our daily lives is closely intertwined with its explainabi...
International audienceThis article investigates unsupervised classification techniques for categoric...
Thesis (M.S.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Often, when classifying multispectral data, only one class or crop is of interest, such as wheat in ...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...
Many applications require the ability to identify data that is anomalous with respect to a target gr...
In classification, with an increasing number of variables, the required number of observations grows...
Interpretable classifiers have recently witnessed an increase in attention from the data mining comm...
Les avancées technologiques ont permis le stockage de grandes masses de données en termes de taille ...
Multivariate discrimination or classification is one of the best-studied problem in machine learning...
The optimization and evaluation of a pattern recognition system requires different problems like mul...
We propose a method for selecting variables in latent class analysis, which is the most common model...
The purpose of the present dissertation is to study model selection techniques which are specificall...
The relevance of machine learning (ML) in our daily lives is closely intertwined with its explainabi...
International audienceThis article investigates unsupervised classification techniques for categoric...
Thesis (M.S.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Often, when classifying multispectral data, only one class or crop is of interest, such as wheat in ...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...